Upload
others
View
0
Download
0
Embed Size (px)
Citation preview
GHG emissions, production and economics of typical French beef and dairy farms in 2035:
will GHG emissions be reduced?
(1) INRA, UMR 1213 Herbivore, 63122 Saint-Genès Champanelle, [email protected]
(2) Institut de l’élevage – Monvoisin - 35652 Le Rheu cedex
MOSNIER Claire (1), DUCLOS Anne (1), LHERM Michel (1), AGABRIEL Jacques (1), GAC Armelle (2).
August 30, 2016, Belfast (UK)
IntroductionThe French low carbon national strategy targets a reduction of 12%
of agricultural emission in 2028 relative to 2013 and of 50% between 1990 and 2050.
Agricultural sector =19% of national emissions ; bovine sector = 60% of the French agricultural sector
How this sector may evolve? Will mitigation objectives be met ? What policies should be implemented to prepare the future?
Overview of the Global project
Definition of coherent, contrasted and plausible scenarios in focus groupsStory telling : drivers, main production changes
Farm level :
Simulation of the impacts of the main drivers of scenarios on the evolution of typical dairy and suckler cow farms
The Gesebov project has investigated the joint evolution of the dairy and beef cattle sectors in horizon 2035
National level : Assumptions regarding milk and beef production
Breakdown of cattle headcount into ≠production systems // technologiesEstimation of GHG emissions with “Climagri”
MATERIAL AND METHOD OF THE FARM LEVEL STUDY
1) The simulation model : Overview
Bioeconomic model (Orfee)Optimisation of the number and type of animals, crop allocation, animal diets, buildings and machineryTo maximize : net revenueUnder constraints : resources (land, labour, buildings), biology (energy and protein requirements, herd, demography), regulations..
Model outputs : Herd and crop productions, input consumption, revenue, GHG emissions..
Model inputs : prices and policy, farm resources, range of available production technologies
1) The simulation model : GHG Calculation
CH4 Enteric fermentation (Sauvant and Noziere, 2016) = f (digestible organic Matter, Dry matter intake / Liveweight, share of concentrate feeds, rumen protein balance), Dejection : f(non digestible organic matters) (Eugène et al, 2012).
N2O Manure management (IPCC Tier2-3) = f(N excreted, manure storage), Managed soils (IPCC tier 1 ) = f( N spreading, Grassland renewal, crop residues, N Leaching)
CO2 Indirect: f (fuel consumption, input purchased)Carbon storage (Soussana et al, 2010) : perm. grasslands 570 kg C/ha/year, annual crops destock 160 kg C/an/yearBiophysical Allocation per kg of liveweight or milk (Agribalyse)
2) Calibration / validation
DATA used :Farm type referential from Inosys Reseaux d’élevage and inra farm
network (forage management, fertilization and yield, animal production, concentrate feeds, economic results, sometimes : fuel consumption, labour)
Technical publications from extension services (Arvalis, Idele, Chambre d’Agriculture, RMT..)
Calibration (adaptation of technical parameters) / validation in 2 steps : Optimisation with fixed herd size / composition and crop activities
for the refenrence yearFor the period 2008-2013 : ‘full’ optimisation
Scenarios
+ S1bis , S2bis with strengthened environmental strategy (improvement of practices, including GHG mitigation options)
S1 ‘Trend ‘ S2 ‘Produc-tion +’
S3 ‘ Grass+’ S4 ‘ GHG- ’
Context Low economic growth
End of the economic crisis
Environemental awareness
Strong policy to reduce GHG
Consumption Continuing decline (-12%)
Increase (+10%)
Fall back upon quality (-10%)
decrease (-20%)
Production MilkMeat
+ 36%+ 6%
+ 60%+16%
+ 7%- 14%
- 21%- 32%
Systems : geog concentrationFarm enlargementMechanisationProd / LSU
++ ++
++++ ++++
- -- --- -
-= +-/+
Drivers of scenarios selectedB0 Baseline price (average 2008-2013)
S1-S4 - Prices =B0 (standard milk = 335€/ton, charolais culled cow = 3.5€/kg carc, wheat =187€/t), fuel and fertilizers: B0 x1.4- First calving three month younger possible, free calving periods,- Same breeds as S0 + Holstein Friesian 2035 : milk yield +30%,liveweight +3.5%, fed indoors- Mixture of cereal_protein crops, alfalfa- Increase of fertilisation efficiency (+10%)- Crop intensitiy : organic / intetrated / conventional / intensive
S2 Labor productivity x2S3 Organic farming with 10% max. of concentrate feed (organic milk
price x 1.2, beef carcass price x1.15, lean animals x 1, crop price≈ x 2 )
S4 Tax on net carbon emission (40€/ t)
2/ Case studies: 2 Suckler Cow farms
SC_Crops251 LSU : young bulls, heifers33m, culled cows - Charolais280 ha : 67% Permanent Grassland, temporary grasslands, 4% corn, 29% cash crops (wheatyield :65q)
SC_Grass86 LSU: weanlings, culled cows,
Salers and Crossbred87 ha : 100% grassland
2/ Case studies: 2 Dairy farms
DC_Crops50 DC : 7800 L milk /DC –Hostein Friesian61 ha : 61% temporarygrasslands, 21% corn, 18%cash crops (cereal yield: 70q)
DC_Grass36 DC : 5700 L milk /DC -normande55 ha : 100% permanentgrasslands
RESULTS
1/ Global GHG emission and production at farm level
- Milk and GHG ↑in dairy farms (S2 : ++ S3 : -- )
- Beef production and GHG↓suckler cow farms (S4 :- -)
2/ GHG emission efficiency and production technology for Dairy farms
Feeding system and stocking rate
0
0,5
1
1,5
2
2,5
01234567
B0 S1 S2 S3 S4 B0 S1 S2 S3 S4
DC.Grass DC.Crops
LSU/
forag
e are
a
tons o
f dry
matte
r per
LSU
grazed grass green fodderhay grass silagecorn silage wrapped alfalfamix cer-protein silage purch. Concentrateon-farm Concentrate stocking rate
Milk yield
2/ GHG emission efficiency and production technology B0 S1 S2 S3 S4
DC_grass
Gross CO2e/ kg milk 0.89 0.75 0.73 0.72 0.75Net CO2e/ kg milk 0.55 0.57 0.60 0.38 0.56
DC_crops
Gross CO2e/ kg milk 0.73 0.66 0.65 0.73 0.65Net CO2e/ kg milk 0.68 0.65 0.64 0.65 0.60
S1 and S2 : increase in milk yield ↓ GHG emissionsS3 : in DC_grass, GHG emissions could also be efficiently
reduced by↓ input consumptions and stocking rateS4≈S1
2/ GHG emission efficiency and production technology: suckler cow farms
Feeding system and stocking rate
00,20,40,60,811,21,41,6
01234567
B0 S1 S2 S3 S4 B0 S1 S2 S3 S4
SC.Grass SC.Crops
LSU/
forag
e are
a
tons o
f dry
matte
r per
LSU
grazed grass green fodder haygrass silage corn silage wrapped alfalfamix cer-protein silage purch. Concentrate on-farm Concentratestocking rate
2/ GHG emission efficiency and production technology: suckler cow farms
B0 S1 S2 S3 S4
SC_Grass Kg CO2e/kglw 14.8 14.2 14.2 13.4 15.2Net CO2e /kglw 7.28 5.69 6.48 5.34 -3.23
SC_Crops
Kg CO2e/kglw 15.0 13.4 13.6 12.9 13.2Net CO2e/kglw 12.2 10.1 10.4 9.1 8.8
• S1 : ↓ emissions by 4-10% • S2 : higher intensification per ha without animal
productivity gain slight ↑of CO2e • S3 : Lowest emissions • S4 : very low stocking rate carbone storage >> GHG
emissions for SC_Grass
2/ Economic results (after salaries, without subsidies)
Net income raises in S1 thanks to technological progress S2 is the most favorable to producers’ net income Net income are close between scenarios S3 and S4
DISCUSSION & CONCLUSION
Summary of objectives and methodology
Objectives were 1) to simulate which technologies would be adopted by some typical suckler cow and dairy farms according to scenarios 2) to assess whether evolution of GHG emissions per unit of product and per farm are compatible with climate change mitigation objectives.
A Single farm level model to simulate a large range of cattle farming system with a focus on production intensification as a driver of GHG emissions
Main results of simulations at farm level
In the future dairy farms are likely to increase their production per hectare while suckler cow farms would reduce it
GHG emissions per unit of milk and meat (without C storage) would be reduced thanks namely to an increase in milk yield, younger age at first calving, spring calving and legumes fodders
the most favorable scenarios for the reduction of GHG emissions level involve the development of organic farming for suckler cow farms and grass based
dairy farm The introduction of a tax on GHG emissions for dairy farms with annual crops.
Limits Not all mitigations strategies have been included (biogas plant, lipid in
animal diets etc.)GHG mitigation options could be even more improved
Simulations have been made with current prices while uncertainties are very important
Impacts of risks on production decisions have not been considered could limit production specialisation and intensification
Repercussions of these scenarios on global food consumptions and GHG emissions?
Would GHG emissions be reduced in French beef and dairy farms in 2035?
(1) INRA, UMR 1213 Herbivore, 63122 Saint-Genès Champanelle, [email protected]
(2) Institut de l’élevage – Monvoisin - 35652 Le Rheu cedex
MOSNIER Claire (1), DUCLOS Anne (1), LHERM Michel (1), AGABRIEL Jacques (1), GAC Armelle (2).
August 31, 2016, Belfast (UK)